Reducibility and Statistical-Computational Gaps from Secret Leakage
Matthew Brennan, Guy Bresler

TL;DR
This paper introduces new reduction techniques based on secret leakage planted clique conjecture, establishing tight computational-statistical tradeoffs across diverse inference problems with different structures.
Contribution
It generalizes the planted clique conjecture to secret leakage variants, enabling reductions among a wide range of statistical inference problems.
Findings
Derived tight computational-statistical tradeoffs for multiple problems
Established reductions among diverse inference problems using secret leakage planted clique
Connected hardness assumptions to combinatorial designs and random matrix theory
Abstract
Inference problems with conjectured statistical-computational gaps are ubiquitous throughout modern statistics, computer science and statistical physics. While there has been success evidencing these gaps from the failure of restricted classes of algorithms, progress towards a more traditional reduction-based approach to computational complexity in statistical inference has been limited. Existing reductions have largely been limited to inference problems with similar structure -- primarily mapping among problems representable as a sparse submatrix signal plus a noise matrix, which are similar to the common hardness assumption of planted clique. The insight in this work is that a slight generalization of the planted clique conjecture -- secret leakage planted clique -- gives rise to a variety of new average-case reduction techniques, yielding a web of reductions among problems with…
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Videos
Reducibility and Statistical-Computational Gaps from Secret Leakage· youtube
Taxonomy
TopicsMachine Learning and Algorithms · Sparse and Compressive Sensing Techniques · Complexity and Algorithms in Graphs
MethodsPrincipal Components Analysis
